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一种用于在 Instagram 上检测和描述非法毒品交易评论和互动的无监督机器学习方法。

An unsupervised machine learning approach for the detection and characterization of illicit drug-dealing comments and interactions on Instagram.

机构信息

Department of Healthcare Research and Policy, UC San Diego - Extension, San Diego, CA, USA.

Global Health Policy and Data Institute, San Diego, CA, USA.

出版信息

Subst Abus. 2022;43(1):273-277. doi: 10.1080/08897077.2021.1941508. Epub 2021 Jul 2.

Abstract

Growing use of social media has led to the emergence of virtual controlled substance and illicit drug marketplaces, prompting calls for action by government and law enforcement. Previous studies have analyzed Instagram drug selling via posts. However, comments made by users involving potential drug selling have not been analyzed. In this study, we use unsupervised machine learning to detect and classify prescription and illicit drug-related buying and selling interactions on Instagram. We used over 1,000 drug-related hashtags on Instagram to collect a total of 43,607 Instagram comments between February 1st, 2019 and May 31st, 2019 using data mining approaches in the Python programming language. We then used an unsupervised machine learning approach, the Biterm Topic Model (BTM), to thematically summarize Instagram comments into distinct topic groupings, which were then extracted and manually annotated to detect buying and selling comments. We detected 5,589 comments from sellers, prospective buyers, and online pharmacies from 531 unique posts. The vast majority (99.7%) of comments originated from drug sellers and online pharmacies. Key themes from comments included providing contact information through encrypted third-party messaging platforms, drug availability, and price inquiry. Commonly offered drugs for sale included scheduled controlled substances such as Adderall and Xanax, as well as illicit hallucinogens and stimulants. Comments from prospective buyers of drugs most commonly included inquiries about price and availability. We detected prescription controlled substances and other illicit drug selling interactions via Instagram comments to posts. We observed that comments were primarily used by sellers offering drugs, and typically not by prospective buyers interacting with sellers. Further research is needed to characterize these "social" drug marketplace interactions on this and other popular social media platforms.

摘要

社交媒体的广泛使用催生了虚拟管制药物和非法毒品交易市场,促使政府和执法部门采取行动。之前的研究已经分析了通过帖子在 Instagram 上销售毒品的情况。然而,用户发表的涉及潜在毒品销售的评论尚未进行分析。在这项研究中,我们使用无监督机器学习来检测和分类 Instagram 上与处方和非法药物相关的买卖互动。我们使用了 1000 多个与药物相关的 Instagram 标签,通过 Python 编程语言中的数据挖掘方法,共收集了 2019 年 2 月 1 日至 2019 年 5 月 31 日期间的 43607 条 Instagram 评论。然后,我们使用无监督机器学习方法,即双词主题模型(BTM),将 Instagram 评论主题总结为不同的主题分组,然后提取并手动注释以检测买卖评论。我们从 531 个帖子中检测到了 5589 条来自卖家、潜在买家和在线药店的评论。绝大多数(99.7%)评论来自药品卖家和在线药店。评论中的主要主题包括通过加密的第三方消息平台提供联系信息、药品供应情况和价格查询。常见的销售药品包括阿德拉尔(Adderall)和赞安诺(Xanax)等管制药物,以及非法迷幻药和兴奋剂。药物潜在买家的评论通常包括对价格和供应情况的查询。我们通过 Instagram 评论帖子检测到处方管制药物和其他非法药物销售互动。我们观察到评论主要由提供药物的卖家使用,而不是与卖家互动的潜在买家使用。需要进一步研究来描述这些在 Instagram 和其他流行社交媒体平台上的“社交”毒品交易市场互动。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/58c1/9675406/24ede72e3ea4/nihms-1842177-f0001.jpg

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